Litcius/Paper detail

Wildland Fire Detection and Monitoring Using a Drone-Collected RGB/IR Image Dataset

Xiwen Chen, Bryce Hopkins, Hao Wang, Leo O’Neill, Fatemeh Afghah, Abolfazl Razi, Peter Z. Fulé, Janice L. Coen, Eric Rowell, Adam C. Watts

2022IEEE Access173 citationsDOIOpen Access PDF

Abstract

Current forest monitoring technologies including satellite remote sensing, manned/piloted aircraft, and observation towers leave uncertainties about a wildfire’s extent, behavior, and conditions in the fire’s near environment, particularly during its early growth. Rapid mapping and real-time fire monitoring can inform in-time intervention or management solutions to maximize beneficial fire outcomes. Drone systems’ unique features of 3D mobility, low flight altitude, and fast and easy deployment make them a valuable tool for early detection and assessment of wildland fires, especially in remote forests that are not easily accessible by ground vehicles. In addition, the lack of abundant, well-annotated aerial datasets – in part due to unmanned aerial vehicles’ (UAVs’) flight restrictions during prescribed burns and wildfires – has limited research advances in reliable data-driven fire detection and modeling techniques. While existing wildland fire datasets often include either color or thermal fire images, here we present (1) a multi-modal UAV-collected dataset of dual-feed side-by-side videos including both RGB and thermal images of a prescribed fire in an open canopy pine forest in Northern Arizona and (2) a deep learning-based methodology for detecting fire and smoke pixels at accuracy much higher than the usual single-channel video feeds. The collected images are labeled to "fire" or "no-fire" frames by two human experts using side-by-side RGB and thermal images to determine the label. To provide context to the main dataset’s aerial imagery, the included supplementary dataset provides a georeferenced pre-burn point cloud, an RGB orthomosaic, weather information, a burn plan, and other burn information. By using and expanding on this guide dataset, research can develop new data-driven fire detection, fire segmentation, and fire modeling techniques.

Topics & Concepts

DroneComputer scienceRemote sensingArtificial intelligenceRGB color modelComputer visionAerial imageImage (mathematics)GeographyBiologyGeneticsFire Detection and Safety SystemsFire effects on ecosystemsVideo Surveillance and Tracking Methods